Traffic forecasting models rely on data that needs to be sensed, processed, and stored. This requires the deployment and maintenance of traffic sensing infrastructure, often leading to unaffordable monetary costs. The lack of sensed locations can be complemented with synthetic data simulations that further lower the economical investment needed for traffic monitoring. One of the most common data generative approaches consists of producing real-like traffic patterns, according to data distributions from analogous roads. The process of detecting roads with similar traffic is the key point of these systems. However, without collecting data at the target location no flow metrics can be employed for this similarity-based search. We present a method to discover locations among those with available traffic data by inspecting topological features. These features are extracted from domain-specific knowledge as numerical representations (embeddings) to compare different locations and eventually find roads with analogous daily traffic profiles based on the similarity between embeddings. The performance of this novel selection system is examined and compared to simpler traffic estimation approaches. After finding a similar source of data, a generative method is used to synthesize traffic profiles. Depending on the resemblance of the traffic behavior at the sensed road, the generation method can be fed with data from one road only. Several generation approaches are analyzed in terms of the precision of the synthesized samples. Above all, this work intends to stimulate further research efforts towards enhancing the quality of synthetic traffic samples and thereby, reducing the need for sensing infrastructure.
翻译:交通流量预测模型依赖于需要感知、处理和储存的数据,这需要部署和维护交通量监测基础设施,往往导致无法负担的货币成本。缺乏感测地点可以辅之以合成数据模拟,进一步降低交通监测所需的经济投资。最常见的数据归正方法之一是根据类似道路的数据分布,产生真实的交通模式;根据类似道路的数据分布,对交通交通交通流量类似的道路进行检测,这是这些系统的关键点。然而,在不收集目标地点的数据的情况下,无法使用流动指标来进行这种以类似程度为基础的搜索。我们提出一种方法,通过检查地形特征来发现具有可用交通数据的地点。这些特征可以从特定领域的知识中提取,如数字表示(组合),以比较不同地点,并最终根据类似嵌入情况找到相似的日常交通流量分布图。审查这一新型选择系统的性能,与更简单的交通估算方法相比较。在找到类似数据来源后,无法使用任何对交通流量概况进行整合的方法来综合。根据感测道路交通流量行为的相似性特征,我们提出一种方法,根据感测路交通流量与准确性特征特征特征特征特征特征特征特征特征特征特征特征特征特征分析。这些特征是从特定知识中提取数据,从而分析不同地点,从而分析所有生成的样本分析方法能够将数据。